Improved customer churn prediction model using word order contextualized semantics on customers’ social opinion

A. Ibitoye, O. Onifade
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引用次数: 1

Abstract

Through the hype in digital marketing and the continuous increase in volume and velocity of opinions about an organization’s brands, churn prediction now requires advanced analytics in opinion mining for effective customer behavioral management beyond keywords sentiment analysis (SA). Earlier, by analyzing customers’ opinions using SA models, the extracted positive-negative polarity is used to classify customers as churners or non-churner. In those methods, the impact of word order, context, and the inherent semantics of the clustered opinion set were oftentimes overlooked. However, with the consistent creation of new words with new meanings mapped to existing words on the web, the research extended the fuzzy support vector model (FSVM) to show that the dependency distance between the headword, its dependent, and tail word can be weighted by using information content derived from a corpus to generate four-classed social opinion categories as a strongly positive, positive, negative, and strong negative. These opinion classes formed the basis for the churn category as a premium customer, Inertia customer potential churner, and churner in customer behavioral management. In performance evaluation, aside from engendering quadrupled churn class against the existing churn binary pattern, better accuracy, precision, and recall values were obtained when compared with existing SA works in support vector machine and fuzzy support vector machine (FSVM), respectively.  
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基于词序语境语义的顾客流失预测模型
通过数字营销的炒作和对组织品牌的意见数量和速度的不断增加,流失预测现在需要在意见挖掘中进行高级分析,以实现有效的客户行为管理,而不仅仅是关键词情绪分析(SA)。先前,通过使用SA模型分析客户意见,提取的正负极性用于将客户分类为流失客户或非流失客户。在这些方法中,词序、上下文和聚类意见集的固有语义的影响经常被忽视。然而,随着网络上已有词与新词义映射的新词不断产生,本研究对模糊支持向量模型(FSVM)进行了扩展,表明可以利用语料库衍生的信息内容对词首词、从属词和尾词之间的依赖距离进行加权,生成强积极、积极、消极和强消极四类社会意见类别。这些意见类别构成了流失类别的基础,如优质客户、惯性客户、潜在流失客户和客户行为管理中的流失客户。在性能评价中,除了针对现有的流失二值模式生成四倍的流失类别外,与现有的SA作品相比,支持向量机和模糊支持向量机(FSVM)分别获得了更高的准确率、精密度和召回率值。
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期刊介绍: International Journal of Advances in Engineering Sciences and Applied Mathematics will be a thematic journal, where each issue will be dedicated to a specific area of engineering and applied mathematics. The journal will accept original articles and will also publish review article that summarize the state of the art and provide a perspective on areas of current research interest.Articles that contain purely theoretical results are discouraged.
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